slot gacor slot gacor hari ini slot gacor 2025 demo slot pg slot gacor slot gacor
PENERAPAN FUZZY C-MEANS KLUSTER UNTUK SEGMENTASI PELANGGAN E-COMMERCE DENGAN METODE RECENCY FREQUENCY MONETARY (RFM) | Prasetyo | Jurnal Gaussian skip to main content

PENERAPAN FUZZY C-MEANS KLUSTER UNTUK SEGMENTASI PELANGGAN E-COMMERCE DENGAN METODE RECENCY FREQUENCY MONETARY (RFM)

*Stevanus Sandy Prasetyo scopus  -  Departemen Statistika, Fakultas Sains dan Matematika, Universitas Diponegoro, Indonesia
Mustafid Mustafid  -  Departemen Statistika, Fakultas Sains dan Matematika, Universitas Diponegoro, Indonesia
Arief Rachman Hakim  -  Departemen Statistika, Fakultas Sains dan Matematika, Universitas Diponegoro, Indonesia
Open Access Copyright 2020 Jurnal Gaussian under http://creativecommons.org/licenses/by-nc-sa/4.0.

Citation Format:
Abstract

E-commerce has become a medium for online shopping which is growing and popular among the public. Due to the ease of access for all internet users and the completeness of the products offered, e-commerce has become a new alternative in meeting people's needs. Currently, the competition in the business world is very fierce, any e-commerce company needs to be able to carry out the right marketing strategy to compete in acquiring, retaining, and partnering with customers. In this research, the segmentation of e-commerce customers was carried out using the Fuzzy C-Means cluster and the RFM method. The clustering process is carried out six times with the number of clusters starts from two to seven clusters. The results showed that the optimum number of clusters formed according to the Xie-Beni validity index was four clusters. The cluster becomes customer segments that have the characteristics of each customer based on their recency, frequency, and monetary value. The best segment is segment 4 which has very loyal customers in shopping on tumbas.in e-commerce. From the segments that have been formed, they can be used as a consideration in implementing the right marketing strategy for each customer.

 

Keywords : E-commerce, customer segmentation, Fuzzy C-Means Cluster, RFM, Xie-Beni Index
Fulltext View|Download

Article Metrics:

  1. Haqiqi, B., Kurniawan, R. 2015. Analisis Perbandingan Metode Fuzzy C-Means Dan Subtractive Fuzzy C-Means. Media Statistika, Hal. 59-67
  2. Hughes, A. 1994. Strategic database marketing masterplan for starting and managing a profitable, customer-based marketing program. Chicago: Probush Publishing
  3. Ningrat, D., Maruddani, D., Wuryandari, T. 2016. Analisis Cluster Dengan Algoritma K-Means dan Fuzzy C-Means Clustering Untuk Pengelompokan Data Obligasi. Jurnal Gaussian, Vol.5 No.4 Hal. 641-650
  4. Santosa, B. 2007. Data Mining Teknik Pemanfaatan Data untuk Keperluan Bisnis. Yogyakarta: Graha Ilmu
  5. Sanusi, W., Zakky, A., Afni, B. 2018. Analisis Fuzzy C-Means dan Penerapannya Dalam Pengelompokan Kabupaten/Kota di Provinsi Sulawesi Selatan Berdasarkan Faktor-faktor Penyebab Gizi Buruk
  6. Saputra, D., Riksakomara, E. 2018. Implementasi Fuzzy C-Means dan Model RFM Untuk Segmentasi Pelanggan. Jurnal Teknik ITS, Vol.7 No.1 2337-3520
  7. Suyanto, D. 2017. Data Mining Untuk Klasifikasi dan Klasterisasi Data. Bandung: Penerbit Informatika
  8. Tan, P., Steinbech, M., Kumar, V. 2006. Introduction to data mining. Boston: Pearsong Education,Ltd

Last update:

No citation recorded.

Last update:

No citation recorded.